13 A learning system for safer re-opening of K-12 schools during the COVID-19 pandemic

BackgroundSchool closures due to the coronavirus disease 2019 (COVID-19) pandemic are harmful to children’s education. Uncertainty in infectiousness and challenges of managing asymptomatic infection slowed school re-opening in many areas of the US. The pandemic required fast, evolving, iterative res...

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Published inBMJ open quality Vol. 10; no. Suppl 2; pp. A14 - A16
Main Authors Inkelas, Moira, Manuel, Vladimir
Format Journal Article
LanguageEnglish
Published London British Medical Journal Publishing Group 07.11.2021
BMJ Publishing Group LTD
BMJ Publishing Group
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Summary:BackgroundSchool closures due to the coronavirus disease 2019 (COVID-19) pandemic are harmful to children’s education. Uncertainty in infectiousness and challenges of managing asymptomatic infection slowed school re-opening in many areas of the US. The pandemic required fast, evolving, iterative response from public health and K-12 schools.ObjectiveUse data displays designed for improvement, coupled with expertise in learning from variation, to offer insights in a fast-paced policy environment. Provide learning support alongside data. MethodsA multidisciplinary team with expertise in epidemiology, family medicine, public health, and biostatistics formed to provide support in learning methods to the second largest US K-12 school system. The team generated time series and funnel statistical process control charts, using the drill-down pathway to provide insight at multiple levels of the school system. The team identified essential capabilities in data and scientific translation to support real-time, fast-paced operational decision-making.ResultsOutcomes include positive COVID-19 tests identified through surveillance (figure 5), school-based secondary infection, school enrollment (figures 1 and 2), quarantine associated with being a close contact of a COVID-19 positive student or staff member, and vaccination drawing from community-level data linked with school region (figures 3 and 4). Data displays showed variation in actionable formats.Abstract 13 Figure 1P Chart (funnel chart):% of Los Angeles Unified elementary students electing in-person learning by city within the school district catchment area when schools re-opened, stratified by community vaccination rateAbstract 13 Figure 2P Chart:% of Grade 6–8 students electing in-person learning in 215 middle schoolsAbstract 13 Figure 3C Chart and cumulative percentage: Uptake of vaccine by age group & neighborhoodAbstract 13 Figure 4C Chart (annotated) # of residents age 16–17 receiving their first COVID-19 vaccine dose, in selected neighborhoodsAbstract 13 Figure 5Hybrid C Chart and I Chart: COVID-19 case countsConclusionsCommon data displays in COVID-19 lack elements required to learn from variation, including denominators, disaggregation (granularity), and operationally relevant stratification (such as subregion and school configuration). Providing these displays offered actionable data to the school district that they employed in areas such as vaccination outreach and testing protocols. There is an ongoing need for scientific input and support of actionable data displays, for use by public health as well as school districts. Future work will include incorporating these displays into operations and generating them from developing databases.
Bibliography:2021 IHI Scientific Symposium
ISSN:2399-6641
DOI:10.1136/bmjoq-2021-IHI.13